bigquery

command
v2.41.0 Latest Latest
Warning

This package is not in the latest version of its module.

Go to latest
Published: Aug 17, 2022 License: Apache-2.0, BSD-3-Clause, MIT Imports: 9 Imported by: 0

Documentation

Overview

Wordcount is an example using cross-language BigQuery transforms to read and write to BigQuery. This example runs a batch pipeline that reads from the public table "shakespeare" described here: https://cloud.google.com/bigquery/public-data#sample_tables. It reads the data of word counts per different work, aggregates them to find total word counts in all works, as well as the average number of times a word appears if it appears in a work, and then writes all that data to a given output table.

This example is only expected to work on Dataflow, and requires a cross-language expansion service that can expand BigQuery read and write transforms. An address to a persistent expansion service can be provided as a flag, or if none is specified then the SDK will attempt to automatically start an appropriate expansion service.

Running an Expansion Server

If the automatic expansion service functionality is not available for your environment, or if you want improved performance, you will need to start a persistent expansion service. These instructions will cover running the Java SchemaIO Expansion Service, and therefore requires a JDK installation in a version supported by Beam. Depending on whether you are running this from a numbered Beam release, or a development environment, there are two sources you may use for the Expansion service.

Numbered release: The expansion service jar is vendored as module org.apache.beam:beam-sdks-java-io-google-cloud-platform-expansion-service in Maven Repository. This jar can be executed directly with the following command:

`java -jar <jar_name> <port_number>`

Development env: This requires that the JAVA_HOME environment variable points to your JDK installation. From the root `beam/` directory of the Apache Beam repository, the jar can be built (or built and run) with the following commands:

./gradlew :sdks:java:io:google-cloud-platform:expansion-service:build
./gradlew :sdks:java:io:google-cloud-platform:expansion-service:runExpansionService -PconstructionService.port=<port_num>

Running the Example on GCP

An example command for executing this pipeline on GCP is as follows:

export PROJECT="$(gcloud config get-value project)"
export TEMP_LOCATION="gs://MY-BUCKET/temp"
export REGION="us-central1"
export JOB_NAME="bigquery-wordcount-`date +%Y%m%d-%H%M%S`"
export OUTPUT_TABLE="123.45.67.89:1234"
export EXPANSION_ADDR="localhost:1234"
export OUTPUT_TABLE="project_id:dataset_id.table_id"
go run ./sdks/go/examples/kafka/types/types.go \
  --runner=DataflowRunner \
  --temp_location=$TEMP_LOCATION \
  --staging_location=$STAGING_LOCATION \
  --project=$PROJECT \
  --region=$REGION \
  --job_name="${JOB_NAME}" \
  --bootstrap_servers=$BOOTSTRAP_SERVER \
  --expansion_addr=$EXPANSION_ADDR \
  --out_table=$OUTPUT_TABLE

Running the Example From a Git Clone

When running on a development environment, a custom container will likely need to be provided for the cross-language SDK. First this will require building and pushing the SDK container to container repository, such as Docker Hub.

export DOCKER_ROOT="Your Docker Repository Root"
./gradlew :sdks:java:container:java8:docker -Pdocker-repository-root=$DOCKER_ROOT -Pdocker-tag=latest
docker push $DOCKER_ROOT/beam_java8_sdk:latest

For runners in local mode, simply building the container using the default values for docker-repository-root and docker-tag will work to have it accessible locally.

Additionally, you must provide the location of your custom container to the pipeline with the --sdk_harness_container_image_override flag for Java, or --environment_config flag for Go. For example:

--sdk_harness_container_image_override=".*java.*,${DOCKER_ROOT}/beam_java8_sdk:latest" \
--environment_config=${DOCKER_ROOT}/beam_go_sdk:latest

Jump to

Keyboard shortcuts

? : This menu
/ : Search site
f or F : Jump to
y or Y : Canonical URL